Yen G G, Meesad P
Sch. of Electr. & Comput. Eng., Oklahoma State Univ., Stillwater, OK.
IEEE Trans Syst Man Cybern B Cybern. 2001;31(4):523-36. doi: 10.1109/3477.938258.
An innovative neuro-fuzzy network appropriate for fault detection and classification in a machinery condition health monitoring environment is proposed. The network, called an incremental learning fuzzy neural (ILFN) network, uses localized neurons to represent the distributions of the input space and is trained using a one-pass, on-line, and incremental learning algorithm that is fast and can operate in real time. The ILFN network employs a hybrid supervised and unsupervised learning scheme to generate its prototypes. The network is a self-organized structure with the ability to adaptively learn new classes of failure modes and update its parameters continuously while monitoring a system. To demonstrate the feasibility and effectiveness of the proposed network, numerical simulations have been performed using some well-known benchmark data sets, such as the Fisher's Iris data and the Deterding vowel data set. Comparison studies with other well-known classifiers were performed and the ILFN network was found competitive with or even superior to many existing classifiers. The ILFN network was applied on the vibration data known as Westland data set collected from a U.S. Navy CH-46E helicopter test stand, in order to assess its efficiency in machinery condition health monitoring. Using a simple fast Fourier transform (FFT) technique for feature extraction, the ILFN network has shown promising results. With various torque levels for training the network, 100% correct classification was achieved for the same torque Levels of the test data.
提出了一种适用于机械状态健康监测环境中故障检测与分类的创新型神经模糊网络。该网络称为增量学习模糊神经网络(ILFN),使用局部神经元来表示输入空间的分布,并采用一种快速且能实时运行的单遍、在线和增量学习算法进行训练。ILFN网络采用混合监督和无监督学习方案来生成其原型。该网络是一种自组织结构,能够在监测系统时自适应地学习新的故障模式类别并不断更新其参数。为了证明所提出网络的可行性和有效性,使用了一些著名的基准数据集进行数值模拟,如费舍尔鸢尾花数据集和德特丁元音数据集。与其他著名分类器进行了比较研究,发现ILFN网络与许多现有分类器具有竞争力,甚至更优。ILFN网络应用于从美国海军CH - 46E直升机试验台收集的称为韦斯特兰数据集的振动数据,以评估其在机械状态健康监测中的效率。使用简单的快速傅里叶变换(FFT)技术进行特征提取,ILFN网络显示出了有希望的结果。在使用各种扭矩水平训练网络后,对于测试数据中相同的扭矩水平实现了100%的正确分类。